| Literature DB >> 29434032 |
Dominik Müller1, Pascal Schopp2, Albrecht E Melchinger3.
Abstract
Genomic selection (GS) offers the possibility to estimate the effects of genome-wide molecular markers, which can be used to calculate genomic estimated breeding values (GEBVs) for individuals without phenotypes. GEBVs can serve as a selection criterion in recurrent GS, maximizing single-cycle but not necessarily long-term genetic gain. As simple genome-wide sums, GEBVs do not take into account other genomic information, such as the map positions of loci and linkage phases of alleles. Therefore, we herein propose a novel selection criterion called expected maximum haploid breeding value (EMBV). EMBV predicts the expected performance of the best among a limited number of gametes that a candidate contributes to the next generation, if selected. We used simulations to examine the performance of EMBV in comparison with GEBV as well as the recently proposed criterion optimal haploid value (OHV) and weighted GS. We considered different population sizes, numbers of selected candidates, chromosome numbers and levels of dominant gene action. Criterion EMBV outperformed GEBV after about 5 selection cycles, achieved higher long-term genetic gain and maintained higher diversity in the population. The other selection criteria showed the potential to surpass both GEBV and EMBV in advanced cycles of the breeding program, but yielded substantially lower genetic gain in early to intermediate cycles, which makes them unattractive for practical breeding. Moreover, they were largely inferior in scenarios with dominant gene action. Overall, EMBV shows high potential to be a promising alternative selection criterion to GEBV for recurrent genomic selection.Entities:
Keywords: GenPred; Genomic Selection; Shared Data Resources; doubled haploid; expected maximum haploid breeding value; genetic gain; optimal haploid value
Mesh:
Year: 2018 PMID: 29434032 PMCID: PMC5873908 DOI: 10.1534/g3.118.200091
Source DB: PubMed Journal: G3 (Bethesda) ISSN: 2160-1836 Impact factor: 3.154
Figure 1Illustration of the computation of EMBV for a heterozygous selection candidate. A (conceptually) infinite population of gametes is generated in silico from the candidate by simulating meiosis events. The corresponding doubled haploid (DH) lines are evaluated for their GEBVs, yielding a distribution of GEBVs (blue curve). The candidate’s GEBV corresponds to the mean GEBV of the DH lines. The EMBV is defined as the expected value of the maximum GEBV of a random sample of DH lines of size where is the expected number of gametes the candidate will contribute to the next generation.
Factors investigated, with symbols and list of levels
| Factor | Symbol | Levels |
|---|---|---|
| Number of selection candidates per generation | ||
| Number of selected individuals per generation | ||
| Number of non-homologous chromosome | ||
| Mode of gene action | additive ( | |
| dominant ( |
Levels in boldface type identify the standard scenario.
Figure 2(A) Genetic gain (R), (B) relative genetic gain and (C) additive variance () for selection criteria genomic-estimated breeding value (GEBV), expected maximum haploid breeding value (EMBV), optimal haploid value (OHV) and weighted GEBV (wGEBV) under recurrent selection. Results refer to and number of chromosomes; number of selection candidates; number of selected individuals.
Figure 3Genetic gain (R) in cycle for selection criteria genomic-estimated breeding value (GEBV), expected maximum haploid breeding value (EMBV), optimal haploid value (OHV) and weighted GEBV (wGEBV) under recurrent selection with purely additive gene action. Boxes and whiskers indicate standard errors and standard deviations across replicates, respectively. number of chromosomes; number of selection candidates; number of selected individuals.